1. Introduction
In recent decades, the rapidly growing global population has posed significant challenges to food supplies [
1]. The escalating demand for food has intensified pressure on cultivated land. Meanwhile, in many regions, inefficient economic output from farming has led to excessive encroachment on, and depletion of, cultivated land due to urbanization [
2,
3]. In this context, rice–aquatic animal co-culture systems have emerged as a potential solution. These systems, which can produce multiple types of food per unit area of land, are increasingly recognized as significantly increasing farmland output efficiency [
4,
5]. As such, they are increasingly seen as an effective way to transition Agri-aquatic food systems towards sustainability [
6,
7]. Among these, the rice–crayfish co-culture system is an emerging and rapidly growing agricultural production model in several Asian countries, including China [
8]. Currently, China’s Ministry of Agriculture recognizes the rice–crayfish co-culture model as a key practice for promoting green and ecological agriculture. It has been incorporated into the country’s future agricultural development plan [
9].
The rice–crayfish co-culture system represents an innovative ecological model for rice cultivation, combining rice farming and crayfish aquaculture within the same ecosystem. This system can effectively stimulate agricultural growth, boost farmers’ income, and achieve a balance between agricultural production and environmental protection [
10,
11,
12]. The system’s rapid development and promotion across southern China and Southeast Asia in recent years can be attributed to its suitability for the climate, substantial profitability, and systemic nutritional sustainability [
13,
14]. For instance, China’s Crayfish Industry Development Report (2021) reveals that, in 2020, over 80% of China’s crayfish production was achieved through the rice–crayfish co-culture system in Rice–Crayfish Fields (RCF). Additionally, nine out of the top thirty crayfish production counties in China were located within the Jianghan Plain region of Hubei Province.
Consequently, accurately capturing the spatiotemporal distribution of RCFs is critical for advancing the rice–crayfish co-culture agricultural production model and refining associated industrial development policies. Currently, data on the spatial and temporal distribution of RCF are mainly obtained through field surveys or statistical sampling methods, which estimate its cultivation area. However, these methods often fail to accurately portray the spatial distribution and changes in RCF over a larger area and at a finer spatial scale. Remote sensing technology, with its capacity for continuous spatiotemporal monitoring, accurately depicts the spatial distribution of features and has become an indispensable tool for acquiring land cover information [
15], such as farmland, urban areas, and forests [
16,
17,
18].
Several researchers have already investigated the extraction of information about the spatial and temporal distribution of RCF. For example, Wei et al. utilized RCF phenology, seasonal water body variations, and Landsat images to map the spatial distribution of RCF with a 30 m spatial resolution in Qianjiang County of the Jianghan Plain region from 2013 to 2018 [
19]. Xia et al. employed a decision tree model and Sentinel-2 imagery to map the high-resolution spatial distribution of RCFs in Qianjiang County in 2019. Their study was grounded in the typical phenological, spectral, and textural features of RCFs [
20]. Chen et al. used Landsat images and the Automated Water Extraction Index (AWEI) to extract the spatiotemporal dynamic changes in RCFs in Jianli County in Jianghan Plain from 2010 to 2019 [
21].
While the aforementioned studies have made advancements in mapping the spatial distribution of RCF in Jianghan Plain, two significant challenges persist. Firstly, current research has primarily focused on individual counties, which leaves a noticeable gap in the study of the spatiotemporal dynamics of RCFs across the entire Jianghan Plain. As a result, accurate depictions of the distribution of and quantitative data on RCFs in this region are still lacking. This gap hinders the provision of a reliable basis for decision making regarding the sustainable development of rice–crayfish co-culture industries and policy formulation in the region. Secondly, existing extraction methods often depend on the phenological traits of RCFs. However, ponds used for lotus root cultivation in the Jianghan Plain region of China may exhibit similar characteristics to RCFs in terms of their phenology, spectra, and texture. Consequently, relying solely on remote sensing images and RCFs’ phenological feature information to extract RCF data could introduce significant uncertainties.
Moreover, understanding the factors that influence the spatiotemporal dynamics of RCFs is vital for gaining a deeper insight into the spatiotemporal evolution of RCFs. Such knowledge is indispensable for effective farmland management and for promoting the sustainable development of the rice–crayfish co-culture-related industries. Various factors, including topography, climate, transportation, demographics, and socioeconomics, all influence the spatial and temporal evolution of RCF, which is a unique type of cultivated land use [
8,
22]. For instance, Chen et al. found that the spatial expansion of RCFs is negatively affected by labor force loss, while it is positively correlated with villagers’ per capita income [
21]. However, their study only analyzed the factors influencing the spatiotemporal changes in RCFs in Jianli County on the Jianghan Plain, considering the proportion of migrant workers and villagers’ per capita income. In general, a comprehensive understanding of the factors influencing the spatiotemporal dynamics of RCF in Jianghan Plain is still lacking.
Given the limitations identified in previous studies regarding the extraction of spatiotemporal distribution data and the analysis of the evolutionary mechanisms of RCFs in the Jianghan Plain region, this study has two primary objectives. The first is to use Sentinel-2 imagery, the phenological characteristics of RCFs, and spatiotemporal land-use data to accurately map the spatiotemporal distribution of RCFs in Jianghan Plain from 2016 to 2020. The second objective is to examine the factors influencing the spatiotemporal evolution of RCFs in the Jianghan Plain. To achieve this, we plan to establish a comprehensive framework that considers multiple dimensions such as socio-economic development status, locational factors, agricultural development conditions, and landscape patterns. This framework will encompass various potential factors influencing the spatiotemporal dynamics of RCF in the Jianghan Plain. Following this, we will analyze the key factors influencing the spatiotemporal dynamics in RCF in Jianghan Plain using the Multiscale Geographically Weighted Regression (MGWR) model. The findings of our research aim to provide a reliable foundation for informed decision making relevant to advancing the rice–crayfish co-culture industries in the Jianghan Plain.
2. Materials and Methods
2.1. Study Area
The Jianghan Plain (29°26′–31°37′N, 111°14′–114°36′E) is situated in the south-central region of Hubei Province, China (
Figure 1) and is a significant part of the middle reaches of the Yangtze River Plain. It was formed by the alluvial deposits of the Yangtze River and its largest tributary, the Han River. The Plain stretches from Yichang in the west to Wuhan in the east, encompassing 18 county-level administrative districts and 295 township-level administrative units, covering a total area of approximately 31,000 square kilometers.
The region falls within the continental subtropical monsoon climate, characterized by simultaneous rain and heat, with an annual precipitation exceeding 1000 mm and abundant sunlight. Known as the ‘land of fish and rice’ in China, the Jianghan Plain, with its flat terrain, fertile soil, and well-developed agricultural irrigation system, provides superior conditions for agricultural production. It serves as an important production base for grain, cotton, oil, and fishery products in China.
The Jianghan Plain is a pioneer region in China for promoting the rice–crayfish co-culture agricultural production model. For this study, we divided the region into three areas based on the timing and location of rice–crayfish co-culture promotion, water distribution, and administrative differences: the core area in the south-central part, the area near the Wuhan metropolitan area in the northeast, and the peripheral areas in the west and north.
The south-central core area, which includes Qianjiang, Xiantao, and most counties of Jingzhou such as Jianli, Honghu, Shishou, Jiangling, and Gong’an, boasts densely distributed lakes and rivers, abundant water resources, rich agricultural land resources, and convenient transportation. These factors provide superior conditions for promoting the rice–crayfish co-culture model, making this region the earliest to do so in Jianghan Plain.
The northeastern region, primarily consisting of Hanchuan and Yunmeng in Xiaogan prefecture, as well as Caidian, a suburb of Wuhan, serves as a significant vegetable supply base for the Wuhan metropolitan area due to its productive agriculture. However, it also faces multiple challenges in protecting arable land due to rapid urbanization and industrialization influenced by the Wuhan metropolitan area.
The peripheral regions, such as the western and northern parts of the Jianghan Plain, experienced late adoption of the rice–crayfish co-culture model. These regions specifically include Songzi and Zhijiang in the Yichang prefecture to the west and Tianmen and Shayang in the northern part of the Jingzhou prefecture. Although this region has abundant lakes, pits, and other water sources, their distribution is significantly less balanced compared to the south-central core area.
In recent years, local governments in Jianghan Plain have implemented numerous policies to support the promotion of the rice–crayfish co-culture model. This has significantly improved the economic efficiency of cultivated land in the region, increased farmers’ income, and effectively protected the cultivated land. Therefore, it is crucial to accurately obtain information on the distribution of RCF and its spatiotemporal change characteristics and evolution patterns on Jianghan Plain for optimizing agricultural and land use policies in the region. Since Wuhan, located in the eastern part of the Jianghan Plain, is a focal area for urbanization and industrial development in Hubei Province, the urban area of Wuhan is excluded from the study region in this research. This study will analyze the spatiotemporal distribution and evolution of RCF in 295 township-level administrative regions in Jianghan Plain from 2016 to 2020.
2.2. Data Sources
In this study, we used the spatiotemporal land use data to map the spatial distribution of RCF, leveraging Sentinel-2 images provided by the Google Earth Engine (GEE) platform (
https://earthengine.google.com/ accessed on 15 November 2022). Due to the limited availability of winter 2016 imagery data in the study area, we specifically used data from December 2016. More precisely, we obtained 42 Sentinel-2 images from 1 December 2016 to 28 February 2017, and 68 images from 1 January to 28 February 2021. These images, which had less than 5% cloud cover, were used to extract the water body areas in the winter months (January–February) of 2016 and 2020 in the Jianghan Plain. Additionally, we used data such as night-light remote sensing images, population statistics, and road information to analyze factors influencing the spatiotemporal evolution of RCF. Details of these data sources are provided in
Table 1.
The land use data for this study, as shown in
Table 1, were sourced from the Land Use Survey Database of the Department of Natural Resources of Hubei Province. We converted the vector land use data into raster images with a 10 m spatial resolution to aid in the extraction of RCF information. To evaluate the impact of macro socioeconomic factors on the spatiotemporal evolution of RCFs, we also collected statistical yearbooks from the prefectural and municipal statistical bureaus in the study area. As acquiring accurate demographic and socioeconomic data at the township scale is challenging, we used remote sensing and other methods to indirectly measure these variables at the township level. Due to the strong correlation between human activities and nighttime light intensity [
23], NPP VIIRS nighttime lighting data were used as an indicator to measure township socio-economic development status in this study. These NTL data were obtained from the Payne Institute for Public Policy Research at the Colorado School of Mines (
https://payneinstitute.mines.edu/eog/ accessed on 11 April 2023). Global population distribution data, sourced from the U.S. Department of Energy’s Oak Ridge National Laboratory (
https://landscan.ornl.gov/ accessed on 20 April 2023) at a 1 km resolution, were adjusted using the seventh census data at the county level to accurately depict the population distribution in Hubei Province. Lastly, we used road data from OpenStreetMap (
https://www.openstreetmap.org/ accessed on 11 April 2023) to examine the influence of factors such as roads on the spatiotemporal changes in RCFs.
2.3. Methods
2.3.1. Extraction of RCF
The cultivation process of a typical RCF is divided into two main phenological stages (
Figure 2): (1) The Middle Rice Planting Period (June–October): This period begins with the transplanting of rice seedlings throughout the field in June and ends with the harvesting of the middle rice in October. During this period, crayfish are cultured in ditches around the rice fields. (2) The Paddy Field Fallow Period (November–May): After the rice harvesting season, the fields are left fallow and are irrigated to a depth of over 50 cm. This coincides with the growth and development of crayfish.
In the Jianghan Plain region, the RCF cultivation process also involves two seasons of crayfish harvesting. The first season begins in mid-April and concludes in early June, followed by the placement of juvenile crayfish for the second season of production. The second catching period runs from the first half of August to the end of September. After catching, parental crayfish are released to provide for subsequent reproduction of juvenile crayfish. As a result, the RCF area is used for rice cultivation and crayfish harvesting from June to October and for water distribution and crayfish development from November to the following May.
However, it is important to note that ponds used for cultivating lotus roots in Jianghan Plain exhibit phenological characteristics that are similar to those of RCFs. The lotus planting period typically begins in late March to early April, with the harvest period starting in September as the lotus leaves become yellow and withered. From late October to the following March, the lotus root is in its dormant stage.
During the growing period of lotus, from May to September, the lotus ponds exhibit a vegetated state, while from October to April, they are unvegetated. This is similar to the RCF cultivation cycle, where the RCF area is used for rice cultivation and crayfish harvesting from June to October, and for water distribution and crayfish development from November to the following May. Therefore, relying solely on phenological features for RCF information extraction may result in misidentifying lotus ponds as RCFs, which can negatively impact the accuracy of RCF information extraction.
Since 2009, the Chinese Government has initiated nationwide land use surveys using remote sensing images with a spatial resolution better than 1 m. To ensure accuracy, numerous field investigations and validations have been conducted. Notably, these surveys classify lotus ponds as water bodies and RCFs as paddy fields. More specifically, RCF refers to those paddy field areas that exhibit water coverage features during January to February. Conversely, in the Jianghan Plain area, the typical planting system involves growing rape or wheat in the paddy fields during winter. This leads to regular paddy fields exhibiting spectral characteristics of vegetation cover during winter, resulting in completely different spectral characteristics compared to RCFs in the same season. This distinction allows for successful differentiation of RCFs from regular paddy fields, which typically appear as vegetation-covered areas with no water during this period.
To address the limitations of existing methods such as those proposed by Wei et al. [
19] and Chen et al. [
21], which struggle to distinguish between RCFs and lotus ponds, we employ land use data to enhance the RCF extraction process. This process includes two primary steps: First, we gather the distribution data of paddy fields from the 2016 and 2020 land use data of the Jianghan Plain. Second, we use the Automated Water Extraction Index for Shadow Areas (
) to identify the paddy fields that present as water bodies during winter. This technique allows us to determine the spatial distribution of RCF.
Figure 3 illustrates the extraction process. The
employs a band combination technique for water extraction, which minimizes the impact of non-water pixels and reduces uncertainties caused by shadows. This method enhances the distinction between water bodies and dark surface land cover types [
24]. The calculation formula is presented in Equation (1).
where
,
,
,
, and
represent the object’s reflectance in the Sentinel-2 Blue, Green, NIR, SWIR1, and SWIR2 bands, respectively. To accurately extract information about water bodies, it is crucial to determine a reasonable
threshold to distinguish them from non-water bodies. In this study, the Otsu method was utilized to identify the optimal threshold for extracting water body information using
. This method differentiates between the background and foreground in an image by setting a binary threshold function that maximizes the inter-class variance, as detailed in [
25].
2.3.2. Landscape Pattern Analysis
We utilized landscape indices to quantify the landscape patterns of RCFs in Jianghan Plain. Based on previous research and the specific insights provided by landscape pattern indices [
26,
27,
28], we selected the Patch Density Index (PD), Landscape Shape Index (LSI), and Aggregation Index (AI). These indices, respectively, represent the patch shape, patch density, and patch aggregation of RCFs in Jianghan Plain (
Table 2).
Among these indices, Patch Density can reflect the complexity of an RCF’s landscape spatial structure; a higher value indicates a greater degree of landscape fragmentation [
29]. Landscape Shape Index measures the complexity of RCF patch shapes, with a higher value pointing to more complex forms [
26]. Aggregation Index characterizes the spatial connectivity of patches, with values ranging from 0 to 100. A higher Aggregation Index value indicates a more concentrated spatial distribution and better connectivity of an RCF, which can make these industries more susceptible to scale effects. The specific calculation methods for these indices are detailed in reference [
30]. We used FRAGSTATS 4.2 to compute the Patch Density, Landscape Shape Index, and Aggregation Index of RCF in Jianghan Plain for the years 2016 and 2020. This allowed us to analyze the spatiotemporal characteristics of RCF landscape patterns.
2.3.3. Spatial Autocorrelation Analysis
We employed spatial autocorrelation analysis to investigate whether RCFs demonstrate significant aggregation characteristics in their spatial distribution. Spatial autocorrelation is frequently used in geographical research due to its unique advantages in revealing spatial clustering of geographical variables and examining the variation in spatial characteristics of geographical variables across regions [
31].
In this study, we used townships as analytical units and applied global Moran’s I to assess the correlation degree in the expansion areas of RCF. We also used the local Moran’s I index to analyze the local spatial clustering of each spatial unit and its neighboring units within the RCF expansion areas. The calculation method for the global Moran’s I index is as follows [
32]:
where
and
are the RCF area in the
ith and
jth township, respectively.
n denotes the number of spatial units (townships),
is the average area of RCF across all townships, and
is the spatial weight matrix. The global Moran’s I index ranges from [26 to 28], where a value greater than 0 indicates positive spatial correlation. The closer the value is to 1, the stronger the correlation, and vice versa. The local Moran’s I index is calculated by the following formula [
32]:
where
and
represent the standardized values of the RCF area for units
i and
j, respectively.
n denotes the number of spatial units (townships) and
is the spatial weight matrix.
represents the RCF area in the
ith township,
is the average area of RCF across all townships, and
is the standard deviation of the RCF area across all units. The local Moran’s I index effectively characterizes the autocorrelation features of RCF area within neighboring units.
2.3.4. Multi-Scale Geographically Weighted Regression
The investigation of influencing factors and the analysis of driving mechanisms in the spatiotemporal evolution of geographical phenomena or processes has long been a central research focus in the field of geography [
33,
34]. The Geographically Weighted Regression (GWR) model, a method for handling spatial variables, is particularly useful in reflecting the spatial heterogeneity caused by geographical environmental variations, also known as spatial non-stationarity, in model parameters [
22]. As such, GWR is extensively used to tackle a range of geographical issues, including land use change, disease spread analysis, and environmental management [
35]. However, the GWR model’s limitation of confining all variables to the same optimal bandwidth may lead to oversimplified spatial relationships and inaccurate estimates [
36]. To address this, Fotheringham introduced the Multi-scale Geographically Weighted Regression (MGWR) model [
37]. This model incorporates different bandwidths for various independent variables, thereby reflecting their diverse effect scales. This adaptation makes spatial process simulation more accurate and meaningful [
38]. The expression for MGWR is as follows:
where
is the dependent variable,
k is the total number of independent variables,
represents the regression coefficient for the
jth independent variable at point
i,
is the bandwidth used for the regression coefficient of the
jth variable,
represents the spatial coordinates of sample point
i,
is the
jth explanatory variable at sample point
i, and
is the random disturbance term.
In this study, to investigate the influencing factors, driving mechanisms, and spatial heterogeneity of the spatiotemporal dynamics in RCF, we used the MGWR model to quantify the relationships between the spatiotemporal dynamics in RCF and the explanatory variables. We will conduct both modeling and parameter fitting using ArcGIS Pro 3.0. For model evaluation, we will use the Akaike Information Criterion corrected (AICc), the adjusted R-Square, and the residual Moran’s I. A well-fitted model will have low AICc and residual Moran’s I values, along with a high adjusted R-Square value.
2.3.5. Potential Influencing Factors
The spatiotemporal change in RCF, a typical process in land use change, is influenced by a combination of natural and socio-economic factors. Given the flat terrain, plentiful arable land, and water resources in the Jianghan Plain region, natural conditions such as topography, precipitation, temperature, sunlight, and soil present homogeneity in this area. These conditions do not pose restrictions on the expansion of RCFs in Jianghan Plain. Accordingly, based on existing studies [
32,
39,
40] and considering the accessibility of data required for large-scale regional analysis, we selected 16 potential influencing factors (
Table 3) from four dimensions: agricultural production conditions, locational conditions, socio-economic development, and the landscape pattern of RCF [
41].
As indicated in
Table 3, agricultural production conditions form the foundation of agricultural development, and both a sufficient water supply and abundant arable land resources are essential for the development of rice–crayfish co-culture system. To comprehensively assess the influence of agricultural production conditions factors on the spatial distribution of RCF within the region, we selected four variables: Distance to Rural Settlements (DRS), Proportion of Cropland (PC), Per Capita Cropland Area (PCCA), and Proportion of Water Area (PWA). Distance to Rural Settlements measures the proximity of the RCF to rural settlements, while Proportion of Cropland and Per Capita Cropland Area account for the rational allocation and utilization of land resources. Proportion of Water Area, on the other hand, pertains to the availability of water resources.
A favorable geographical location, accessible transportation, and proximity to water sources can all enhance the expansion of an RCF. Thus, in terms of locational conditions, we focus on factors such as Distance to Water Sources (DWS), Road Network Density (RND), Distance to County Town (DCT), and Distance to Road (DR) to examine their impact on the expansion of RCFs. Distance to Water Sources demonstrates the closeness of an RCF to water sources, which is directly tied to the accessibility of water resources. Road Network Density indicates the density of the regional transportation network, and convenient transportation can facilitate the cultivation of RCFs, as well as the processing and transport of products. Furthermore, examining Distance to County Town and Distance to Road can provide a deeper understanding of how the distribution of RCF is influenced by locational factors like county towns and roads.
The level of regional economic development, population size, and other socio-economic conditions are also crucial factors influencing the expansion of RCFs. In this study, a range of indicators reflecting these socio-economic conditions were selected. These include the Gross Domestic Product (GDP), Rural Population Density (RPD), Average Nighttime Light Intensity (ANLI), and Proportion of Construction Land (PCL).
In the process of land utilization, farmers are influenced by the surrounding land use conditions [
42]. As such, the landscape pattern and spatial distribution characteristics of regional RCF also impact the neighboring arable land use. For example, the spatial continuity and aggregated distribution of RCFs often lead to the clustering and economies of scale in the crayfish–rice co-cultivation industries. This facilitates the innovation and promotion of rice–crayfish co-cultivation agricultural production model, reduces costs, and enhances the profitability of the industry. Therefore, in this study, we use landscape pattern indices of RCFs such as Patch Density (PD), Landscape Shape Index (LSI), and Aggregation Index (AI) to reflect the spatial distribution morphology, aggregation degree, and connectivity of RCFs in an analysis unit.
4. Discussion
4.1. Expansion of RCF in Jianghan Plain
During the period from 2016 to 2020, RCFs in the Jianghan Plain exhibited a significant expansion trend, with the cultivation area doubling. This finding aligns with the results of Si et al. [
11]. Overall, our findings are generally consistent with existing datasets and research. Notably, five counties—Qianjiang, Jianli, Honghu, Shishou, and Gong’an—located in the central-south core area of the Jianghan Plain, accounted for nearly 80% of the total RCF increase in the region. However, a noticeable loss of RCFs in this region is observed (
Figure 7). This phenomenon could be attributed to human activities such as urbanization and industrialization encroaching on RCFs. Alternatively, it could be a result of initiatives by local governments and farmers to optimize the spatial pattern of RCFs through land consolidation and other engineering measures. Specifically, over the past five years, there has been a significant increase in the spatial clustering of RCFs in the region, along with a pronounced agglomeration effect and trend in the RCCS industry. This suggests that the land management strategies and industrial reforms implemented by the local government in this region have been markedly successful in promoting RCFs.
RCFs in the northeastern region, particularly in Hanchuan, have been experiencing a clear decreasing trend. This is largely due to the rapid economic and industrial development in this area, driven by the Wuhan metropolitan area. The expansion of urban areas and industrial growth have led to the loss of arable land. This is evident in increased landscape fragmentation, heightened shape complexity, and diminished connectivity between patches of RCF in this region. These areas need to bolster cropland protection and strictly regulate the transition of cropland to limit construction activities. Moreover, they should ensure that there is no net loss of cropland to ultimately promote sustainable development.
Conversely, the western and northern peripheral regions are areas where RCCS has been actively promoted in recent years. The RCFs in these regions have shown characteristics of multi-point sporadic distribution, as evidenced by increased landscape fragmentation, heightened shape complexity, and reduced connectivity between patches. While promoting RCCS in these regions, it is crucial to stress the implementation of intensive land use practices to minimize land fragmentation and enhance land connectivity.
4.2. Factors Influencing the Spatiotemporal Dynamics of RCF in Jianghan Plain
Based on the analysis presented in
Section 3.3, the expansion of RCFs in the Jianghan Plain is influenced by a mixture of factors such as the RCF landscape pattern, geographical conditions, agricultural production circumstances, and socio-economic aspects. Among these, the RCF landscape pattern and location conditions play a particularly significant role in the expansion of RCFs, incorporating elements like the Aggregation Index, Landscape Shape Index, Patch Density, and Distance to Water Sources. Conversely, the impact of Distance to Rural Settlements and Proportion of Construction Land is relatively less significant.
Our study underscores the crucial role of the RCF landscape pattern in its expansion. For example, Patch Density has a negative effect on RCF expansion, while the Aggregation Index generally exhibits a strong positive influence. This implies that areas with larger and more contiguous RCF patches are more prone to RCF expansion. This can be attributed to the fact that a concentrated distribution of RCF can generate economies of scale and agglomeration effects, thereby reducing the cost of industrial development, enhancing RCF output efficiency, and fostering further expansion of the rice–crayfish co-culture related industries. Furthermore, the Landscape Shape Index significantly positively impacts RCF expansion. This is because the more complex the patch is, the more patches it interacts with, thereby better facilitating the promotion of rice–crayfish co-culture related industries and the expansion of RCFs.
When it comes to geographical conditions, Distance to Water Sources plays an integral role in RCF expansion and exhibits significant spatial heterogeneity. Along the north–south axis of Shishou–Shayang, paddy fields closest to water sources are prioritized for the introduction of the rice–crayfish co-culture model due to their higher water requirements. In the southeast core area, where the rice–crayfish co-culture model was initiated earlier, patches in close proximity to water sources have already been converted to RCFs. As a result, the newly expanded RCFs tend to be located in paddy field areas that are relatively distant from water sources.
In the context of agricultural production conditions, Distance to Rural Settlements negatively impacts the expansion of RCF, indicating that being closer to residential areas is advantageous for RCF expansion. This is because RCF cultivation requires substantial labor input and being in proximity to residential areas eases daily field care and management for farmers.
With regard to socio-economic conditions, the Proportion of Construction Land has a positive impact on the expansion of RCFs. This can be understood in three ways. First, it can be viewed as a result of China’s farmland protection policy. In areas with a larger proportion of construction land, the economy is typically more advanced, which leads to increased pressure to protect arable land. In such circumstances, implementing co-culture systems like the rice–crayfish model can effectively increase the value of cultivable land, thereby alleviating the pressure on arable land protection. Second, regions with high Proportion of Construction Land often correspond with more developed economic conditions, implying a relatively higher demand for crayfish consumption. Third, these regions often provide the necessary financial support, labor resources, and infrastructure required for the expansion of the RCFs. Consequently, in these regions, farmers are more motivated to adopt the rice–crayfish co-culture model to satisfy market demands and achieve better economic returns.
4.3. Policy Implications
The growth of RCFs in the Jianghan Plain, as well as the factors influencing it, exhibits significant spatial diversity. Consequently, we suggest that local governments in the region formulate differentiated regulation policies to promote rice–crayfish co-culture related industries in the Jianghan Plain. These policies should take into account local agricultural conditions, location, socio-economic growth, and the landscape pattern of the RCFs. Below are some specific recommendations:
Firstly, the impact of the RCF landscape pattern on its expansion suggests that in Jianghan Plain, RCF growth is more likely in areas with larger and more contiguous RCF patches. For future promotion of the rice–crayfish co-culture model, the continuity of RCFs should be taken into consideration. Local governments can promote the spatial clustering of RCF through land consolidation and other engineering projects. They can also enhance the infrastructure for crayfish farming and processing to drive the scale and aggregation development of the rice–crayfish co-culture related industries.
Secondly, the availability of water is a crucial factor that restricts the expansion of RCFs. As depicted in
Figure 12g, the factor “Distance to Water Sources” exhibits a significant negative relationship with the expansion of RCFs in most areas of the Jianghan Plain. This underscores the vital role of water sources in the expansion of RCFs. Consequently, local governments should increase investment in agricultural water conservation, ensure the efficiency and optimization of irrigation systems in farmland, and provide ample water resources to support the advancement of the rice–crayfish co-culture agricultural production model.
Thirdly, the expansion of RCFs is also impacted by the ‘Distance to Rural Settlements’. Local governments, particularly those in Songzi, Dangyang, and Zhijiang counties in the western part of the Jianghan Plain, should optimize the spatial layout of rural settlements and enhance rural infrastructure through rural planning and land consolidation projects. This will facilitate the daily management and care of RCFs by farmers.
Lastly, we recommend that local governments prioritize the promotion of RCF-related industries in regions abundant in labor and with a solid economic development foundation. As depicted in
Figure 12h, the Proportion of Construction Land positively affects RCF expansion. A higher proportion of construction land indicates superior infrastructure, more developed markets, and a concentration of human resources. These elements can provide the necessary labor, capital, technology, and consumer markets for the expansion of RCF and the development of related industries. Therefore, directing focus to such regions could lead to a more efficient use of resources and increase the likelihood of successful RCF expansion.
The rapid expansion of the rice–crayfish co-culture model in the Jianghan Plain area over the past five years is indeed noteworthy due to its significant economic and ecological benefits, providing a sustainable and profitable approach to farming. The implications of our findings in this study are profound for land resource management and the sustainable development of rice–crayfish co-culture industries in Jianghan Plain. The spatial heterogeneity in the growth of RCFs and influencing factors demands tailored regulatory policies, which must consider the unique agricultural circumstance, location, socio-economic growth, water resources, and the RCF landscape patterns of different regions.
The expansion of RCFs is not just about increasing production; it is also about creating a sustainable model that bolsters economic development, environmental conservation, and social progress. This is particularly significant in a country like China, which places a special emphasis on the protection of cultivated land. The expansion of RCF can also help protect and sustainably utilize China’s limited cultivated land resources, thereby alleviating concerns about a potential food crisis. These findings offer a roadmap to achieve this balance, offering an actionable guide for local governments in the Jianghan Plain and potentially serving as a reference for other regions worldwide considering similar agricultural models.
4.4. Limitations and Future Works
This study has some limitations that should be acknowledged. Firstly, our research methodology depends on land-use survey data. However, China’s first nationwide high-precision land survey was not conducted until 2009, which may impact the general applicability of our research method. Consequently, our future aim is to refine the RCF extraction method and investigate more universally applicable methods. Secondly, as an RCF is a kind of agricultural co-culture system, its spatiotemporal evolution is strongly affected by macroeconomic and social factors like agricultural product prices and government land-use policies. The influence these aspects have on RCFs, and how they exert their impact, requires further investigation. For example, while current crayfish prices are on a steady rise, the effect of future price fluctuations on RCF expansion remains an open question. Thus, we hope that future research can comprehensively explore the potential factors and mechanisms influencing RCF expansion. This will not only deepen our understanding of the factors driving RCF expansion but also provide valuable insights for relevant decision-making.
5. Conclusions
In recent years, the RCFs in the Jianghan Plain region of China have rapidly expanded, spurred by local government policies and active participation from farmers. However, the current lack of data on the spatiotemporal distribution of RCFs in the area, as well as the insufficient comprehension of the influencing factors and spatiotemporal evolution mechanisms, stand as obstacles to the sustainable development of rice–crayfish co-culture related industries in the region.
In this study, we used Sentinel-2 imagery and land use survey data to extract information on RCF distribution in Jianghan Plain from 2016 to 2020. Based on this, we applied spatial autocorrelation and MGWR models with townships as the research units, to explore the spatial heterogeneity of the spatiotemporal variation and influencing factors of RCFs in Jianghan Plain. The findings of our research indicate the following:
(1) From 2016 to 2020, the overall trend of RCFs in Jianghan Plain demonstrated a significant expansion, with the RCF area expanding by 99.81% (rising from 1216.04 km2 in 2016 to 2429.76 km2 in 2020). The expansion of RCFs primarily exhibited a pattern of spreading outwards from the central-southern core area of the Jianghan Plain.
(2) RCFs in the Jianghan Plain exhibit significant spatial aggregation features, with High–High clusters predominantly found in the Qianjiang and Jianli areas located in the central-southern part of the Plain. Conversely, Low–Low clusters are primarily situated on the western and northern peripheries of the Jianghan Plain.
(3) The spatiotemporal dynamics of the RCFs in the Jianghan Plain during 2016 and 2020 were influenced by factors such as RCF landscape patterns, agricultural production conditions, locational factors, and socio-economic conditions, with each influencing factor exhibiting distinct spatial heterogeneity. Among these, the RCF landscape pattern played the most significant role in the expansion of RCFs. The analysis of factors affecting the spatiotemporal evolution of RCF suggests that RCF expansion is more likely to take place in paddy field areas with larger and more contiguous existing RCF patches, favorable water source conditions, and closer proximity to roads and rural settlements.
Agri-aqua-food systems have proven to be an effective strategy for promoting sustainable agricultural development, enhancing land productivity, and are significantly important in increasing farmers’ income and protecting arable land. In order to promote the sustainable development of Agri-aqua food systems, specifically the rice–crayfish co-culture system in Jianghan Plain, the following recommendations are proposed: (1). Local governments, supported by the national rural revitalization strategy and village planning, should optimize the spatial layout of rural settlements and improve infrastructure, including enhancing agricultural irrigation systems and rural road networks. These measures would create a conducive environment and provide the necessary infrastructure for the successful promotion and growth of rice–crayfish co-culture related industries in the Jianghan Plain. (2). The concentration and contiguity of RCF should be promoted through engineering measures like land consolidation. It is also essential to establish agricultural facilities pertinent to the rice–crayfish co-culture industries, including the processing, storage, and transportation of rice and crayfish products. These measures would result in the clustering and efficient development of rice–crayfish co-culture related industries. (3). Local governments should also optimize the spatial layout of urban development zones, ecological protection zones, and farmland protection zones. This would help to mitigate the conflicts between urbanization, ecological protection, and cultivated land protection, and better protect cultivated land, thereby providing a guarantee for the growth of farmers’ income and the sustainable development of agriculture in the region.